MediScan: A Framework of U-Health and Prognostic AI Assessment on Medical Imaging.

IF 2.7 Q3 IMAGING SCIENCE & PHOTOGRAPHIC TECHNOLOGY
Sibtain Syed, Rehan Ahmed, Arshad Iqbal, Naveed Ahmad, Mohammed Ali Alshara
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引用次数: 0

Abstract

With technological advancements, remarkable progress has been made with the convergence of health sciences and Artificial Intelligence (AI). Modern health systems are proposed to ease patient diagnostics. However, the challenge is to provide AI-based precautions to patients and doctors for more accurate risk assessment. The proposed healthcare system aims to integrate patients, doctors, laboratories, pharmacies, and administrative personnel use cases and their primary functions onto a single platform. The proposed framework can also process microscopic images, CT scans, X-rays, and MRI to classify malignancy and give doctors a set of AI precautions for patient risk assessment. The proposed framework incorporates various DCNN models for identifying different forms of tumors and fractures in the human body i.e., brain, bones, lungs, kidneys, and skin, and generating precautions with the help of the Fined-Tuned Large Language Model (LLM) i.e., Generative Pretrained Transformer 4 (GPT-4). With enough training data, DCNN can learn highly representative, data-driven, hierarchical image features. The GPT-4 model is selected for generating precautions due to its explanation, reasoning, memory, and accuracy on prior medical assessments and research studies. Classification models are evaluated by classification report (i.e., Recall, Precision, F1 Score, Support, Accuracy, and Macro and Weighted Average) and confusion matrix and have shown robust performance compared to the conventional schemes.

meddiscan: u -健康和医学成像预后人工智能评估框架。
随着技术的进步,健康科学与人工智能的融合取得了显著进展。现代卫生系统旨在简化患者诊断。然而,挑战在于为患者和医生提供基于人工智能的预防措施,以进行更准确的风险评估。拟议的医疗保健系统旨在将患者、医生、实验室、药房和管理人员的用例及其主要功能集成到一个平台上。该框架还可以处理显微图像、CT扫描、x射线和MRI,对恶性肿瘤进行分类,并为医生提供一套用于患者风险评估的人工智能预防措施。提出的框架结合了各种DCNN模型,用于识别人体中不同形式的肿瘤和骨折,即大脑、骨骼、肺、肾脏和皮肤,并借助微调大语言模型(LLM)即生成预训练变压器4 (GPT-4)生成预防措施。有了足够的训练数据,DCNN就可以学习到具有高度代表性的、数据驱动的、分层的图像特征。GPT-4模型因其对先前医学评估和研究的解释、推理、记忆和准确性而被选择用于产生预防措施。分类模型通过分类报告(即召回率,精度,F1分数,支持度,准确性,宏观和加权平均)和混淆矩阵进行评估,与传统方案相比,显示出稳健的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Imaging
Journal of Imaging Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
5.90
自引率
6.20%
发文量
303
审稿时长
7 weeks
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